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Fire Localization Based On Range-Range-Range Model for Limited Interior Space

机译:基于范围-范围-范围模型的有限室内空间火灾定位

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摘要

Fire localization problem is studied based on temperature data taken by wireless sensor arrays and a novel range-range-range (RRR) model is proposed to overcome shortcomings, which exists in the current range-point-range (RPR) model in this paper. For a single sensor array composed of four sensors deployed with a square, three angle estimates on fire bearing can be obtained using far-field localization technology. These angle estimates are used to get their statistical mean and variance at a single time. Based on the statistical features, we propose two fire localization methods under the RRR frame, which are angle bisector and nonlinear filtering methods. For the angle bisector method, a recursive formula of the mean and variance is presented in time series so that global angle estimates can be used. Furthermore, a fire coordinate estimate, which is actually the center of estimated-range circle, can be taken by use of intersecting two angle bisectors from two sensor arrays. Moreover, the estimation of a radius for the estimated fire region is also realized. In order to improve localization accuracy and robustness of fire estimation to non-Gaussian noise component, the fire localization is taken as a nonlinear bearing-only tracking issue for the case where the covariance of measurement noise is unknown and a specific variational Bayesian adaptive square-cubature Kalman filter is proposed to estimate the coordinate of the center. These proposed algorithms not only provide some new points of view on the fire localization for limited interior space, but are helpful for practical fire fighting applications.
机译:基于无线传感器阵列获取的温度数据,研究了火源定位问题,提出了一种新型的RRR模型,克服了目前的RPR模型中存在的不足。对于由四个部署有正方形的传感器组成的单个传感器阵列,可以使用远场定位技术获得三个防火角度估计。这些角度估计值可用于一次获得其统计平均值和方差。基于统计特征,提出了RRR框架下的两种火源定位方法,即角度平分线和非线性滤波方法。对于角平分线方法,按时间序列给出了均值和方差的递归公式,以便可以使用全局角估计。此外,可以通过使用来自两个传感器阵列的两个角度等分线相交来获取实际上是估计范围圆的中心的射击坐标估计。此外,还实现了针对估计的火区的半径的估计。为了提高定位精度和对非高斯噪声分量的火估算的鲁棒性,在测量噪声的协方差未知且特定变分贝叶斯自适应平方的情况下,将火定位视为非线性的纯方位跟踪问题提出利用库尔曼卡尔曼滤波器估计中心坐标。这些算法不仅为有限空间内部的火灾定位提供了一些新的观点,而且对实际的消防应用也有帮助。

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